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Log-Spiral Keypoint: A Robust Approach toward Image Patch Matching

机译:log-spiral keypoint:朝向图像补丁匹配的强大方法

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摘要

Matching of keypoints across image patches forms the basis of computer vision applications, such as object detection, recognition, and tracking in real-world images. Most of keypoint methods are mainly used to match the high-resolution images, which always utilize an image pyramid for multiscale keypoint detection. In this paper, we propose a novel keypoint method to improve the matching performance of image patches with the low-resolution and small size. The location, scale, and orientation of keypoints are directly estimated from an original image patch using a Log-Spiral sampling pattern for keypoint detection without consideration of image pyramid. A Log-Spiral sampling pattern for keypoint description and two bit-generated functions are designed for generating a binary descriptor. Extensive experiments show that the proposed method is more effective and robust than existing binary-based methods for image patch matching.
机译:匹配跨图像修补的关键点构成计算机视觉应用程序的基础,例如对象检测,识别和在实际图像中跟踪。 大多数KeyPoint方法主要用于匹配高分辨率图像,该高分辨率图像始终利用图像金字塔进行多尺度键点检测。 在本文中,我们提出了一种新颖的Keypoint方法,可以提高图像贴片的匹配性能,具有低分辨率和小尺寸。 使用用于Keypoint检测的Log-Spiral采样模式,从原始图像贴片直接估计关键点的位置,缩放和方向,而不考虑图像金字塔。 用于Keypoint描述的日志螺旋采样模式和两个位生成的函数被设计用于生成二进制描述符。 广泛的实验表明,该方法比对图像补丁匹配的现有二进制方法更有效和强大。

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